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논문 기본 정보

자료유형
학술저널
저자정보
Hae-Jong Joo (University of Kangnam) Ho-Bin Song (University of Mokwon)
저널정보
ICT플랫폼학회 JOURNAL OF PLATFORM TECHNOLOGY JOURNAL OF PLATFORM TECHNOLOGY Vol.11 No.6
발행연도
2023.12
수록면
3 - 12 (10page)

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초록· 키워드

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In today"s system operation, it is difficult to detect failures and take immediate action in the case of a shortage of manpower compared to the number of equipment or failures in vulnerable time zones, which can lead to delays in failure recovery. In addition, various algorithms exist to detect abnormal symptom data, and it is important to select an appropriate algorithm for each problem. In this paper, an ensemble-based isolation forest model was used to efficiently detect multivariate point anomalies that deviated from the mean distribution in the data set generated to predict system failure and minimize service interruption. And since significant changes in memory space usage are observed together with changes in CPU usage, the problem is solved by using LSTM-Auto Encoder for a collective anomaly in which another feature exhibits an abnormal pattern according to a change in one by comparing two or more features. did In addition, evaluation indicators are set for the performance evaluation of the model presented in this study, and then AI model evaluation is performed.

목차

Abstract
Ⅰ. Introduction
Ⅱ. Related Works
Ⅲ. Artificial Intelligence System Model for Anomaly Data Detection
Ⅳ. Evaluation of the proposed system AI model
Ⅴ. Conclusion
Ⅵ. References

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